Robust N-1 secure HV Grid Flexibility Estimation for TSO-DSO coordinated Congestion Management with Deep Reinforcement Learning
Nowadays, the PQ flexibility from the distributed energy resources (DERs) in the high voltage (HV) grids plays a more critical and significant role in grid congestion management in TSO grids. This work proposed a multi-stage deep reinforcement learning approach to estimate the PQ flexibility (PQ are...
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Zusammenfassung: | Nowadays, the PQ flexibility from the distributed energy resources (DERs) in
the high voltage (HV) grids plays a more critical and significant role in grid
congestion management in TSO grids. This work proposed a multi-stage deep
reinforcement learning approach to estimate the PQ flexibility (PQ area) at the
TSO-DSO interfaces and identifies the DER PQ setpoints for each operating point
in a way, that DERs in the meshed HV grid can be coordinated to offer
flexibility for the transmission grid. In the estimation process, we consider
the steady-state grid limits and the robustness in the resulting voltage
profile against uncertainties and the N-1 security criterion regarding thermal
line loading, essential for real-life grid operational planning applications.
Using deep reinforcement learning (DRL) for PQ flexibility estimation is the
first of its kind. Furthermore, our approach of considering N-1 security
criterion for meshed grids and robustness against uncertainty directly in the
optimization tasks offers a new perspective besides the common relaxation
schema in finding a solution with mathematical optimal power flow (OPF).
Finally, significant improvements in the computational efficiency in estimation
PQ area are the highlights of the proposed method. |
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DOI: | 10.48550/arxiv.2211.05855 |